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›› 2018, Vol. 30 ›› Issue (4): 18-22.doi: 10.13998/j.cnki.issn1002-1248.2018.04.003

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Comparative Study of Chinese Text Classification Model based on Particle Swarm Intelligence

LUO Xin   

  1. School of Business Administration, South China University of Technology, Guangdong Guangzhou 510640, China
  • Received:2017-03-27 Online:2018-04-05 Published:2018-04-13

Abstract: In the face of massive, heterogeneous, dynamic text information, automatic text classification is of great significance. In recent years, the swarm intelligence theory and method, which has been gradually developed, provides a new intelligent method for text categorization. This paper attempted to introduce the mature particle swarm intelligence algorithm to the text classification field. The text preprocessing model was constructed, which was the foundation of text categorization model. A text categorization model Text PSO-Miner based on PSO was constructed and tested and compared on the vector space matrix of text set. Text PSO-Miner performance indicators were better than the classic classification model(SVM,KNN,NB) and ACO based text classification model. The results showed that Text PSO-Miner can be better applied to text categorization.

Key words: swarm intelligence

CLC Number: 

  • TP391
[1] 马海兵,毕久阳,郭新顺. 文本分类方法在网络舆情分析系统中的应用研究[J].情报科学,2015,(5):97-101.
[2] Liangxiao Jiang, Chaoqun Li, Shasha Wang, et al.Deep feature weighting for naive Bayes and its application to text classification[J].Engineering Applications of Artificial Intelligence,2016,6(52):26-39.
[3] Kennedy J, Eberhart R C.Particle swarm optimization[C].Preference of IEEE Int’1 conference on Neural Networks.Australia: IEEE service center,1995,(4):1 942-1 948.
[4] Eberhart R C, Shi Y.Tracking and optimizing dynamic systems with particle swarms[C].the IEEE Congress on Evolutionary Computation.San Francisco,USA:IEEE,2001.
[5] 孟安波,李专.一种催化粒子群算法及其性能分析[J].计算机应用研究,2016,(8):1-7.
[6] 朱虹,李爽,郑丽敏,杨璐.基于粒子群算法的生猪养殖物联网节点部署优化研究[J].农业机械学报,2016,(5):1-15.
[7] 张艳梅,姜淑娟,陈若玉,等.基于粒子群优化算法的类集成测试序列确定方法[J].计算机学报,2016,(39):1-18.
[8] T.Sousa, A.Silva,A.Neves, Particle swarm based data mining algorithms for classification tasks[J].Parallel Computing,2004,5-6(30):767-783.
[9] Nicholas Holden and Alex A.Freitas, A Hybrid PSO/ACO Algorithm for Discovering Classification Rules in Data Mining[J].Journal of Artificial Evolution and Applications, vol.2008, Article ID 316145, 11 pages, 2008.doi:10.1155/2008/316145.
[10] 罗新,王兆礼,路永和.基于蚁群智能算法的文本分类研究[J].图书情报工作,2011,(2):103-106.
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